DDoS: DeepDefence and Machine Learning for identifying attacks
Abstract
Distributed Denial of Service (DDoS) attacks are very common type of
computer attack in the world of internet today. Automatically detecting such type of
DDoS attack packets & dropping them before passing through the network is the best
prevention method. Conventional solution only monitors and provide the feedforward
solution instead of the feedback machine-based learning. A Design of Deep neural
network has been suggested in this work and developments have been made on
proactive detection of attacks. In this approach, high level features are extracted for
representation and inference of the dataset. Experiment has been conducted based on
the ISCX dataset published in year 2017,2018 and CICDDoS2019 and program has
been developed in Matlab R17b, utilizing Wireshark for features extraction from the
datasets.
Network Intrusion attacks on critical oil and gas industrial installation become
common nowadays, which in turn bring down the giant industrial sites to standstill and
suffer financial impacts. This has made the production companies to started investing
millions of dollars revenue to protect their critical infrastructure with such attacks with
the active and passive solutions available. Our thesis constitutes a contribution to such
domain, focusing mainly on security of industrial network, impersonation and attacking
with DDoS.
DOI/handle
http://hdl.handle.net/10576/15162Collections
- Computing [100 items ]